Improving Multi-label Classifiers via Label Reduction with Association Rules

Author
Abstract
Multi-label classification is a generalization of well known problems, such as binary or multi-class classification, in a way that each processed instance is associated not with a class (label) but with a subset of these. In recent years different techniques have appeared which, through the transformation of the data or the adaptation of classic algorithms, aim to provide a solution to this relatively recent type of classification problem. This paper presents a new transformation technique for multi-label classification based on the use of association rules aimed at the reduction of the label space to deal with this problem.
Year of Publication
2012
Date Published
9
Conference Location
Salamanca (Spain)
ISBN Number
978-3-642-28930-9
DOI
10.1007/978-3-642-28931-6_18
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Number of Pages
188-199
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Notes

TIN2008-06681-C06-02,TIC-3928